Integration of artificial intelligence into cardiac ultrasonography practice.

Shlomo Y Shaulian, Dhir Gala, Amgad N Makaryus
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Abstract

Introduction: Over the last several decades, echocardiography has made numerous technological advancements, with one of the most significant being the integration of artificial intelligence (AI). AI algorithms assist novice operators to acquire diagnostic-quality images and automate complex analyses.

Areas covered: This review explores the integration of AI into various echocardiographic modalities, including transthoracic, transesophageal, intracardiac, and point-of-care ultrasound. It examines how AI enhances image acquisition, streamlines analysis, and improves diagnostic performance across routine, critical care, and complex cardiac imaging. To conduct this review, PubMed was searched using targeted keywords aligned with each section of the paper, focusing primarily on peer-reviewed articles published from 2020 onward. Earlier studies were included when found to be foundational or frequently cited. The findings were organized thematically to highlight clinical relevance and practical applications.

Expert opinion: Challenges persist in clinical application, including algorithmic bias, ethical concerns, and the need for clinician training and AI oversight. Despite these, AI's potential to revolutionize cardiovascular care through precision and accessibility remains unparalleled, with benefits likely to far outweigh obstacles if appropriately applied and implemented in cardiac ultrasonography.

将人工智能融入心脏超声检查实践。
导读:在过去的几十年里,超声心动图取得了许多技术进步,其中最重要的是人工智能(AI)的集成。人工智能算法帮助新手操作员获取诊断质量的图像并自动进行复杂的分析。涵盖领域:本综述探讨了人工智能与各种超声心动图模式的整合,包括经胸、经食管、心内和即时超声。它探讨了人工智能如何增强图像采集,简化分析,并提高常规,重症监护和复杂心脏成像的诊断性能。为了进行这项审查,我们使用与论文的每个部分相匹配的目标关键词对PubMed进行了搜索,主要关注自2020年以来发表的同行评议文章。早期的研究包括基础研究或经常被引用的研究。研究结果按主题组织,以突出临床相关性和实际应用。专家意见:在临床应用中仍然存在挑战,包括算法偏见、伦理问题、临床医生培训和人工智能监督的需求。尽管如此,人工智能通过精确性和可及性来彻底改变心血管护理的潜力仍然是无与伦比的,如果在心脏超声检查中得到适当的应用和实施,其好处可能远远超过障碍。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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